【摘 要】
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We give an overview of recent developments in numerical optimization-based com-putation of tensor decompositions. We pay special attention to large-scale pr
【出 处】
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2016年张量和矩阵学术研讨会(International conference on Tensor, Matrix a
论文部分内容阅读
We give an overview of recent developments in numerical optimization-based com-putation of tensor decompositions. We pay special attention to large-scale problems, constrained decompositions and coupled matrix/tensor factorization. We highlight some features of Tensorlab, of which version 3.0 has been released in March. The discussion is illustrated with examples. Joint work with Nico Vervliet, Otto Debals, Laurent Sorber, Marc Van Barel.
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